How can I write summationn constraints for an optimization problem?

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Good morning,
I would like to optimize the following equation:
min
with the following contraints:
x>0
Where is a known set of values, is equal to a [288x1] vector and is also known as a [288x1] vector.
How can I add those constraints? I am trying to use x=fmincon(fun,x0,A,b,Aeq,beq);
Thanks!

Respuesta aceptada

Matt J
Matt J el 29 de Sept. de 2020
Editada: Matt J el 29 de Sept. de 2020
fmincon is not the best tool to use for a linear program. In the problem-based framework, you can set up the problem to be solved with linprog() as follows:
x=optimvar('x',size(c),'LowerBound',0);
prob=optimproblem('Objective',x.'*price);
prob.Constraints.sumx=sum(x-c)==0;
sol=solve(prob);
  2 comentarios
Ricardo López
Ricardo López el 29 de Sept. de 2020
Thanks! that works but it gives just one minimum. is electricity consumption and price is the price at every time i. I would like to re-locate that consumption in a "real" way. Not just finding a minimum in price and consume everything there.
Idk if I shoud add more constraints then, but it worked with the optimization tool in Matlab. Thing is, I would like to have or understand the code behind it.
Thanks!
Matt J
Matt J el 29 de Sept. de 2020
Thing is, I would like to have or understand the code behind it.
TMW will not provide the code, but there are algorithm descriptions here
It sounds like we have answered your original question, so I encourage you to Accept-click the answer. If you have spin-off questions, it would be best if you pose them in a separate thread.

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Más respuestas (1)

Ameer Hamza
Ameer Hamza el 29 de Sept. de 2020
Something like this
price = rand(288, 1); % example value
c = rand(288, 1); % example value
sum_c = sum(c);
x0 = rand(288, 1); % initial guess
fmincon(@(x) price.'*x, x0, [], [], [], [], [], [], @(x) nlcon(x, sum_c)) % price.'*x is same as sum(price.*x)
function [cneq, ceq] = nlcon(x, sum_c)
cneq = [];
ceq = sum(x) - sum_c;
end

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